基于数据驱动模型的热轧卷板位置实时推荐系统

IF 6.1 Q1 AUTOMATION & CONTROL SYSTEMS
Chihun Lee, Da Seul Shin, Youn Hee Kang, Kanghyouk Choi, Dong Yong Park, Junsuk Rho
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引用次数: 0

摘要

热轧卷板在包括汽车、建筑和机械在内的各种行业中都是必不可少的。然而,堆场中钢筋混凝土的冷却过程往往是不均匀的,因为相邻盘管之间存在复杂的热相互作用,而且环境条件也会发生变化,从而影响钢材的力学性能和质量。在本研究中,我们使用基于有限元法(FEM)的简化传热模型来生成真实的模拟数据。我们开发了一种新的管理系统,该系统将两个经过训练的人工神经网络与深度和广泛的网络相结合,使用超参数调谐来提高预测速度,这是FEM的已知局限性。该系统可以预测线圈上多个点的温度变化,从而实现策略性放置,最大限度地减少温度偏差,提高冷却均匀性。这种实时计算方法消除了额外冷却设备的必要性,并确保了高产品质量。通过案例研究验证了系统的有效性,揭示了动态调整和优化的位置。该系统的平均绝对误差为3.44,平均绝对百分比误差为0.24%,优于传统的回归技术。这些结果证明了该系统在模拟真实冷却场景中的有效性,以及在钢铁制造中进行实时冷却优化的可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Real-Time Hot-Rolled Coil Placement Recommendation System with Data-Driven Model

Real-Time Hot-Rolled Coil Placement Recommendation System with Data-Driven Model

Real-Time Hot-Rolled Coil Placement Recommendation System with Data-Driven Model

Real-Time Hot-Rolled Coil Placement Recommendation System with Data-Driven Model

Real-Time Hot-Rolled Coil Placement Recommendation System with Data-Driven Model

Hot-rolled coils (HRCs) are essential in various industries, including automotive, construction, and machinery. However, the cooling process of HRCs in the yard tends to be nonuniform because of complex thermal interactions between adjacent coils and varying environmental conditions, which affect the mechanical properties and steel quality. In this study, we used simplified heat transfer models based on the finite element method (FEM) to generate realistic simulation data. We developed a novel management system that integrates two trained artificial neural networks with deep and wide networks using hyperparameter tuning to improve prediction speed, a known limitation of FEM. The system predicts temperature variations at multiple points on the coil, enabling strategic placement that minimizes temperature deviations and enhances cooling uniformity. This real-time computational approach eliminates the necessity for additional cooling equipment and ensures high product quality. The system's efficacy was validated through case studies, revealing dynamic adjustments and optimized placements. The proposed system achieved a mean absolute error of 3.44 and a mean absolute percentage error of 0.24%, outperforming conventional regression techniques. These results demonstrated the effectiveness of the system in simulating real-world cooling scenarios and its feasibility for real-time cooling optimization in steel manufacturing.

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CiteScore
1.30
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